import matplotlib.pyplot as plt import numpy as np from plots import plot_map_rain, project_to_latlon # Load the file data = np.load("2020/202004201700.npz") # Adjust path as needed rain = data["arr_0"] # The array is stored under 'arr_0' print("Array shape:", rain.shape) # Shape = (1536, 1536) # Negative values indicate no data, replace them with NaN: rain = np.where(rain < 0, np.nan, rain) # Visualize print("Making basic plot...") plt.imshow(rain, cmap="Blues") plt.colorbar(label="Rainfall (x0.01 mm / 5min)") plt.title("Rainfall Accumulation – 2020-04-20 17:00 UTC") plt.savefig("rainfall_20200420_1700_basic.png") plt.close() print("Converting and projecting rainfall data...") rain = rain / 100 # Convert from mm10-2 to mm rain = rain * 60 / 5 # Convert from mm to mm/h da_reproj = project_to_latlon(rain) print(da_reproj) print("Plotting projected rainfall data...") plot_map_rain( data=da_reproj, title="Rainfall Rate – 2020-04-20 17:00 UTC", path="rainfall_20200420_1700_map.png", )